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Physics-informed neural networks with hard constraints for inverse
  design

Physics-informed neural networks with hard constraints for inverse design

9 February 2021
Lu Lu
R. Pestourie
Wenjie Yao
Zhicheng Wang
F. Verdugo
Steven G. Johnson
    PINN
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Papers citing "Physics-informed neural networks with hard constraints for inverse design"

50 / 62 papers shown
Title
Good Things Come in Pairs: Paired Autoencoders for Inverse Problems
Good Things Come in Pairs: Paired Autoencoders for Inverse Problems
Matthias Chung
Bas Peters
Michael Solomon
34
0
0
10 May 2025
Is the end of Insight in Sight ?
Is the end of Insight in Sight ?
J. Tucny
M. Durve
S. Succi
59
0
0
07 May 2025
Reliable and Efficient Inverse Analysis using Physics-Informed Neural Networks with Distance Functions and Adaptive Weight Tuning
Reliable and Efficient Inverse Analysis using Physics-Informed Neural Networks with Distance Functions and Adaptive Weight Tuning
Shota Deguchi
Mitsuteru Asai
PINN
AI4CE
81
0
0
25 Apr 2025
A Probabilistic Neuro-symbolic Layer for Algebraic Constraint Satisfaction
A Probabilistic Neuro-symbolic Layer for Algebraic Constraint Satisfaction
Leander Kurscheidt
Paolo Morettin
Roberto Sebastiani
Andrea Passerini
Antonio Vergari
57
0
0
25 Mar 2025
Implicit Bias in Matrix Factorization and its Explicit Realization in a New Architecture
Yikun Hou
Suvrit Sra
A. Yurtsever
34
0
0
28 Jan 2025
Neural Port-Hamiltonian Differential Algebraic Equations for Compositional Learning of Electrical Networks
Neural Port-Hamiltonian Differential Algebraic Equations for Compositional Learning of Electrical Networks
Cyrus Neary
Nathan Tsao
Ufuk Topcu
77
1
0
15 Dec 2024
Stochastic Taylor Derivative Estimator: Efficient amortization for arbitrary differential operators
Stochastic Taylor Derivative Estimator: Efficient amortization for arbitrary differential operators
Zekun Shi
Zheyuan Hu
Min-Bin Lin
Kenji Kawaguchi
160
5
0
27 Nov 2024
Fourier PINNs: From Strong Boundary Conditions to Adaptive Fourier Bases
Fourier PINNs: From Strong Boundary Conditions to Adaptive Fourier Bases
Madison Cooley
Varun Shankar
Robert M. Kirby
Shandian Zhe
32
2
0
04 Oct 2024
Improved physics-informed neural network in mitigating gradient related
  failures
Improved physics-informed neural network in mitigating gradient related failures
Pancheng Niu
Yongming Chen
Jun Guo
Yuqian Zhou
Minfu Feng
Yanchao Shi
PINN
AI4CE
26
0
0
28 Jul 2024
Robust Biharmonic Skinning Using Geometric Fields
Robust Biharmonic Skinning Using Geometric Fields
Ana Dodik
Vincent Sitzmann
Justin Solomon
Oded Stein
3DH
42
2
0
01 Jun 2024
Unveiling the optimization process of Physics Informed Neural Networks:
  How accurate and competitive can PINNs be?
Unveiling the optimization process of Physics Informed Neural Networks: How accurate and competitive can PINNs be?
Jorge F. Urbán
P. Stefanou
José A. Pons
PINN
45
6
0
07 May 2024
BiLO: Bilevel Local Operator Learning for PDE inverse problems
BiLO: Bilevel Local Operator Learning for PDE inverse problems
Ray Zirui Zhang
Xiaohui Xie
John S. Lowengrub
68
1
0
27 Apr 2024
Neural Parameter Regression for Explicit Representations of PDE Solution
  Operators
Neural Parameter Regression for Explicit Representations of PDE Solution Operators
Konrad Mundinger
Max Zimmer
Sebastian Pokutta
50
0
0
19 Mar 2024
Learning solution operators of PDEs defined on varying domains via
  MIONet
Learning solution operators of PDEs defined on varying domains via MIONet
Shanshan Xiao
Pengzhan Jin
Yifa Tang
50
3
0
23 Feb 2024
Speeding up and reducing memory usage for scientific machine learning
  via mixed precision
Speeding up and reducing memory usage for scientific machine learning via mixed precision
Joel Hayford
Jacob Goldman-Wetzler
Eric Wang
Lu Lu
49
8
0
30 Jan 2024
Data-Driven Physics-Informed Neural Networks: A Digital Twin Perspective
Data-Driven Physics-Informed Neural Networks: A Digital Twin Perspective
Sunwoong Yang
Hojin Kim
Y. Hong
K. Yee
R. Maulik
Namwoo Kang
PINN
AI4CE
31
17
0
05 Jan 2024
Dynamically configured physics-informed neural network in topology
  optimization applications
Dynamically configured physics-informed neural network in topology optimization applications
Ji-Cheng Yin
Ziming Wen
Shuhao Li
Yaya Zhang
Hu Wang
AI4CE
PINN
44
4
0
12 Dec 2023
Physics-informed neural networks for transformed geometries and
  manifolds
Physics-informed neural networks for transformed geometries and manifolds
Samuel Burbulla
AI4CE
29
0
0
27 Nov 2023
Exact and soft boundary conditions in Physics-Informed Neural Networks
  for the Variable Coefficient Poisson equation
Exact and soft boundary conditions in Physics-Informed Neural Networks for the Variable Coefficient Poisson equation
Sebastian Barschkis
26
1
0
04 Oct 2023
Physics-Informed Neural Networks for an optimal counterdiabatic quantum
  computation
Physics-Informed Neural Networks for an optimal counterdiabatic quantum computation
Antonio Ferrer-Sánchez
Carlos Flores-Garrigós
C. Hernani-Morales
José J. Orquín-Marqués
N. N. Hegade
Alejandro Gomez Cadavid
Iraitz Montalban
Enrique Solano
Yolanda Vives-Gilabert
J. D. Martín-Guerrero
32
2
0
08 Sep 2023
Learning Specialized Activation Functions for Physics-informed Neural
  Networks
Learning Specialized Activation Functions for Physics-informed Neural Networks
Honghui Wang
Lu Lu
Shiji Song
Gao Huang
PINN
AI4CE
16
12
0
08 Aug 2023
Residual-based attention and connection to information bottleneck theory
  in PINNs
Residual-based attention and connection to information bottleneck theory in PINNs
Sokratis J. Anagnostopoulos
Juan Diego Toscano
Nikos Stergiopulos
George Karniadakis
25
20
0
01 Jul 2023
Pseudo-Hamiltonian neural networks for learning partial differential
  equations
Pseudo-Hamiltonian neural networks for learning partial differential equations
Sølve Eidnes
K. Lye
26
10
0
27 Apr 2023
A physics-informed neural network framework for modeling
  obstacle-related equations
A physics-informed neural network framework for modeling obstacle-related equations
Hamid EL Bahja
J. C. Hauffen
P. Jung
B. Bah
Issa Karambal
PINN
AI4CE
31
3
0
07 Apr 2023
NSGA-PINN: A Multi-Objective Optimization Method for Physics-Informed
  Neural Network Training
NSGA-PINN: A Multi-Objective Optimization Method for Physics-Informed Neural Network Training
B.-L. Lu
Christian Moya
Guang Lin
PINN
37
11
0
03 Mar 2023
Error convergence and engineering-guided hyperparameter search of PINNs:
  towards optimized I-FENN performance
Error convergence and engineering-guided hyperparameter search of PINNs: towards optimized I-FENN performance
Panos Pantidis
Habiba Eldababy
Christopher Miguel Tagle
M. Mobasher
35
20
0
03 Mar 2023
A conceptual model for leaving the data-centric approach in machine
  learning
A conceptual model for leaving the data-centric approach in machine learning
S. Scher
Bernhard C. Geiger
Simone Kopeinik
A. Trugler
Dominik Kowald
28
0
0
07 Feb 2023
Experimental observation on a low-rank tensor model for eigenvalue
  problems
Experimental observation on a low-rank tensor model for eigenvalue problems
Jun Hu
Pengzhan Jin
13
2
0
01 Feb 2023
Estimation of fibre architecture and scar in myocardial tissue using
  electrograms: an in-silico study
Estimation of fibre architecture and scar in myocardial tissue using electrograms: an in-silico study
Konstantinos Ntagiantas
E. Pignatelli
N. Peters
C. Cantwell
R. Chowdhury
Anil A. Bharath
21
1
0
06 Dec 2022
Neural DAEs: Constrained neural networks
Neural DAEs: Constrained neural networks
Tue Boesen
E. Haber
Uri M. Ascher
39
3
0
25 Nov 2022
Physics-Informed Koopman Network
Physics-Informed Koopman Network
Yuying Liu
A. Sholokhov
Hassan Mansour
S. Nabi
AI4CE
31
3
0
17 Nov 2022
Physics-informed neural networks for operator equations with stochastic
  data
Physics-informed neural networks for operator equations with stochastic data
Paul Escapil-Inchauspé
G. A. Ruz
34
2
0
15 Nov 2022
Partial Differential Equations Meet Deep Neural Networks: A Survey
Partial Differential Equations Meet Deep Neural Networks: A Survey
Shudong Huang
Wentao Feng
Chenwei Tang
Jiancheng Lv
AI4CE
AIMat
29
18
0
27 Oct 2022
A Dimension-Augmented Physics-Informed Neural Network (DaPINN) with High
  Level Accuracy and Efficiency
A Dimension-Augmented Physics-Informed Neural Network (DaPINN) with High Level Accuracy and Efficiency
Weilong Guan
Kai-Ping Yang
Yinsheng Chen
Zhong Guan
PINN
AI4CE
18
12
0
19 Oct 2022
A Unified Hard-Constraint Framework for Solving Geometrically Complex
  PDEs
A Unified Hard-Constraint Framework for Solving Geometrically Complex PDEs
Songming Liu
Zhongkai Hao
Chengyang Ying
Hang Su
Jun Zhu
Ze Cheng
AI4CE
18
17
0
06 Oct 2022
A Model-Constrained Tangent Slope Learning Approach for Dynamical
  Systems
A Model-Constrained Tangent Slope Learning Approach for Dynamical Systems
Hai V. Nguyen
T. Bui-Thanh
39
2
0
09 Aug 2022
A comprehensive study of non-adaptive and residual-based adaptive
  sampling for physics-informed neural networks
A comprehensive study of non-adaptive and residual-based adaptive sampling for physics-informed neural networks
Chen-Chun Wu
Min Zhu
Qinyan Tan
Yadhu Kartha
Lu Lu
32
353
0
21 Jul 2022
Learning differentiable solvers for systems with hard constraints
Learning differentiable solvers for systems with hard constraints
Geoffrey Negiar
Michael W. Mahoney
Aditi S. Krishnapriyan
31
28
0
18 Jul 2022
TT-PINN: A Tensor-Compressed Neural PDE Solver for Edge Computing
TT-PINN: A Tensor-Compressed Neural PDE Solver for Edge Computing
Z. Liu
Xinling Yu
Zheng-Wei Zhang
PINN
16
7
0
04 Jul 2022
Hybrid thermal modeling of additive manufacturing processes using
  physics-informed neural networks for temperature prediction and parameter
  identification
Hybrid thermal modeling of additive manufacturing processes using physics-informed neural networks for temperature prediction and parameter identification
Shuheng Liao
Tianju Xue
Jihoon Jeong
Samantha Webster
K. Ehmann
Jian Cao
AI4CE
32
46
0
15 Jun 2022
Statistical Inference of Constrained Stochastic Optimization via Sketched Sequential Quadratic Programming
Statistical Inference of Constrained Stochastic Optimization via Sketched Sequential Quadratic Programming
Sen Na
Michael W. Mahoney
34
7
0
27 May 2022
Scalable algorithms for physics-informed neural and graph networks
Scalable algorithms for physics-informed neural and graph networks
K. Shukla
Mengjia Xu
N. Trask
George Karniadakis
PINN
AI4CE
72
40
0
16 May 2022
Physics-informed neural networks for PDE-constrained optimization and
  control
Physics-informed neural networks for PDE-constrained optimization and control
Jostein Barry-Straume
A. Sarshar
Andrey A. Popov
Adrian Sandu
PINN
AI4CE
29
14
0
06 May 2022
Lagrangian PINNs: A causality-conforming solution to failure modes of
  physics-informed neural networks
Lagrangian PINNs: A causality-conforming solution to failure modes of physics-informed neural networks
R. Mojgani
Maciej Balajewicz
P. Hassanzadeh
PINN
33
45
0
05 May 2022
Improved Training of Physics-Informed Neural Networks with Model
  Ensembles
Improved Training of Physics-Informed Neural Networks with Model Ensembles
Katsiaryna Haitsiukevich
Alexander Ilin
PINN
39
23
0
11 Apr 2022
Sliced gradient-enhanced Kriging for high-dimensional function
  approximation
Sliced gradient-enhanced Kriging for high-dimensional function approximation
Kai Cheng
Ralf Zimmermann
29
7
0
05 Apr 2022
On the Role of Fixed Points of Dynamical Systems in Training
  Physics-Informed Neural Networks
On the Role of Fixed Points of Dynamical Systems in Training Physics-Informed Neural Networks
Franz M. Rohrhofer
S. Posch
C. Gößnitzer
Bernhard C. Geiger
PINN
38
17
0
25 Mar 2022
Respecting causality is all you need for training physics-informed
  neural networks
Respecting causality is all you need for training physics-informed neural networks
Sizhuang He
Shyam Sankaran
P. Perdikaris
PINN
CML
AI4CE
49
199
0
14 Mar 2022
WaveY-Net: Physics-augmented deep learning for high-speed
  electromagnetic simulation and optimization
WaveY-Net: Physics-augmented deep learning for high-speed electromagnetic simulation and optimization
Ming-Keh Chen
Robert Lupoiu
Chenkai Mao
Der-Han Huang
Jiaqi Jiang
P. Lalanne
Jonathan A. Fan
28
19
0
02 Mar 2022
MIONet: Learning multiple-input operators via tensor product
MIONet: Learning multiple-input operators via tensor product
Pengzhan Jin
Shuai Meng
Lu Lu
20
158
0
12 Feb 2022
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